使用马来西亚雪兰莪州卫星图像的支持向量机和最大似然分类的比较分析

Mohammed Feras Baig, Muhammad Raza Ul Mustafa, H. Takaijudin, M. Zeshan
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引用次数: 0

摘要

土地利用图是评价土地利用变化所必需的,它对各种环境和生态现象产生影响。由于卫星遥感,现在可以可靠地绘制和监测环境过程和土地利用变化。土地利用分类是评估土地利用模式变化的方法。监督分类方法因其客观性和准确性得到了广泛的应用。本研究旨在分析使用最大似然(ML)和支持向量机(SVM)土地利用分类方法生成的土地利用地图的准确性。使用2021年马来西亚雪兰莪州的Landsat图像作为图像分类的输入数据集。然后进行精度评估,以衡量生成的分类地图的有效性。分类结果表明,SVM比ML更准确,SVM的kappa系数为0.904,ML的kappa系数为0.864。这项研究的结果将提供关于土地利用模式的关键方面的有用资料,这些资料可用于自然资源管理和长期可持续性的城市规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative analysis of support vector machine and maximum likelihood classifications using satellite images of Selangor, Malaysia
Land use maps are necessary for assessing the land use changes, that have an impact on various environmental and ecological phenomenon. Environmental processes and land use changes can now be reliably mapped and monitored due to satellite remote sensing. Land use classification is employed to assess the changes in land use patterns. Supervised classification methods are widely used because of objectivity and accuracy. The study aims to analyze the accuracy of land use maps generated using) Maximum Likelihood (ML) and Support Vector Machine (SVM) methods of land use classification. Landsat images of the state of Selangor, Malaysia from the year 2021 was used as the input dataset for the image classification. Accuracy assessment was then conducted to measure the validity of the generated classified map. The results of the classification show that SVM is more accurate than ML. The kappa coefficient obtained from SVM was 0.904, whereas for ML was 0.864. The findings of this study will offer useful information on the key aspects of land use patterns that may be applied in natural resource management and urban planning for long-term sustainability.
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